基于噪声正则化的弱监督受损建筑定位与评估

Maria Presa-Reyes, Shu‐Ching Chen
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引用次数: 0

摘要

自然灾害造成的破坏不仅损害人的生命,而且还可能对社区基础设施造成毁灭性的破坏,并可能造成历史建筑和重要文件的损失。卫星图像和航空照片等遥感调查工具的技术进步使应急人员能够迅速和远程地对灾害事件造成的损害进行全面评估。以前提出的基于光学遥感数据的建筑物损伤评估自动识别和预测的研究大多依赖于受影响区域结构的精确几何足迹的可用性。然而,随着新基础设施的建设和旧基础设施的拆除或翻新,现有的建筑足迹可能会迅速过时。我们提出了一个端到端的弱监督损伤评估模型,该模型假设在训练期间建筑物的足迹是未知的。取而代之的是对该建筑的位置和受损程度的粗略估计。消融测试是在我们团队准备和策划的大型卫星图像集和较小的航空照片集上进行的,以证明我们提出的模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weakly-Supervised Damaged Building Localization and Assessment with Noise Regularization
Not only does the destruction caused by natural disasters impair human lives, but it can also result in devastating damages to the community infrastructure and possibly cause the loss of historic structures as well as vital documents. Technological advances in remote sensing survey tools such as satellite images and aerial photographs have allowed emergency responders to rapidly and remotely conduct a comprehensive assessment of the damages caused by a disaster event. Most of the previously proposed research in the automatic identification and prediction of building damage assessments from optical remote sensing data depends on the availability of accurate geometric footprints of the affected area’s structures. However, the available building footprints may rapidly become outdated as new infrastructures are built while old ones are demolished or renovated. We propose an end-to-end weakly-supervised damage assessment model where the assumption is that the building footprint is unknown during training. Instead, there is a rough estimate of the building’s location and the level of damage it sustained. Ablation tests are conducted on both a large-scale satellite imagery set and a smaller set of aerial photographs prepared and curated by our team to demonstrate our proposed model’s performance.
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